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Eugene S. Takle Iowa State University, Ames, IA gstakle@iastate.edu Transferability Intercomparisons: New Insights by Use of Regional Climate Models Indiana University, 27 October 2006
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What do we mean by “Transferability Intercomparisons”? Intercomparison of simulations performed by a collection of regional climate models, each applied without changing tuning parameters, on multiple domains.
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“Transferability” is considered the next step beyond RCM “model intercomparison projects” (MIPs) for advancing our understanding of the global energy balance and the global water cycle by use of models
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Transferability Objective Regional climate model transferability experiments are designed to advance the science of high-resolution climate modeling by taking advantage of continental-scale observations and analyses.
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Objective Regional climate model transferability experiments are designed to advance the science of high-resolution climate modeling by taking advantage of continental-scale observations and analyses. Model Intercomparisons Projects (MIPs) have helped modelers eliminate major model deficiencies. Coordinated studies with current models can advance scientific understanding of global water and energy cycles.
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Use of Regional Models to Study Climate How portable are our models?
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Use of Regional Models to Study Climate How portable are our models? How much does “tuning” limit the general applicability to a range of climatic regions?
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Use of Regional Models to Study Climate How portable are our models? How much does “tuning” limit the general applicability to a range of climatic regions? Can we recover some of the generality of “first-principles” models by examining their behavior on a wide range of climates?
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Transferability Working Group (TWG) Overall Objective To understand physical processes underpinning the global energy budget, the global water cycle, and their predictability through systematic intercomparisons of regional climate simulations on several continents and through comparison of these simulated climates with coordinated continental-scale observations and analyses
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Examples of Past Advances due to “Transferability”: Applications of Non-US Models to North American Domain* Australian model run over the US revealed need for a much more robust vegetation model to capture strong feedbacks not common in Australia * From Project to Intercompare Regional Climate Simulations (PIRCS)
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Examples of Past Advances due to “Transferability”: Applications of Non-US Models to North American Domain* Australian model run over the US revealed need for a much more robust vegetation model to capture strong feedbacks not common in Australia Canadian model run over the US revealed need for more accurate convective parameterization for strong convection not found in Canada * From Project to Intercompare Regional Climate Simulations (PIRCS)
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Examples of Past Advances due to “Transferability”: Applications of Non-US Models to North American Domain* Australian model run over the US revealed need for a much more robust vegetation model to capture strong feedbacks not common in Australia Canadian model run over the US revealed need for more accurate convective parameterization for strong convection not found in Canada Swedish model run over the US severely tested its convection, interaction of convection with the PBL and turbulent representation of the LLJ (which is not prevalent in Europe). Provided new ideas for linking convective activity to convective cloudiness. * From Project to Intercompare Regional Climate Simulations (PIRCS)
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TRANSFERABILITY EXPERIMENTS FOR ADDRESSING CHALLENGES TO UNDERSTANDING GLOBAL WATER CYCLE AND ENERGY BUDGET PIRCS PRUDENCE LA PLATA RMIP IRI/ARC GKSS/ICTS ARCMIP AMMA MAGS BALTEX MDB GAME GAPP LBA GAPP LBA GAME CATCH BALTIMOS CAMP GLIMPSE SGMIPQUIRCS
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Project to Intercompare Regional Climate Simulations (PIRCS) Experiment PIRCS 1a
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Project to Intercompare Regional Climate Simuations (PIRCS) Experiment PIRCS 1b
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Types of Experiments Multiple models on multiple domains (MM/MD) –Hold model choices constant for all domains
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Types of Experiments Multiple models on multiple domains (MM/MD) –Hold model choices constant for all domains Not –Single models on single domains –Single models on multiple domains –Multiple models on single domains
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Specific Objectives of TWG Provide a framework for systematic evaluation of simulations of dynamical and climate processes arising in different climatic regions
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Specific Objectives of TWG Provide a framework for systematic evaluation of simulations of dynamical and climate processes arising in different climatic regions Evaluate “transferability”, that is, quality of model simulations in “non-native” regions
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Specific Objectives of TWG Provide a framework for systematic evaluation of simulations of dynamical and climate processes arising in different climatic regions Evaluate “transferability”, that is, quality of model simulations in “non-native” regions “Meta-comparison” among models and among domains
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GEWEX CSEs overlain to indicate correlation between "hotspots" as identified by Koster et al. (2004) and GEWEX CSEs. Dashed circle over India indicates a major "hotspot" that is not a CSE, but dialog is beginning with Indian Meteorological Department on joint experiments. Locations of “hotspots” having high land-atmosphere coupling strength as identified by Koster et al. (2004) with GEWEX Continental Scale Experiments overlain.
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Static stability (CAPE) –Diurnal timing –Seasonal patterns –Spatial patterns Monsoon characteristics –Diurnal timing of precip –Onset timing –Precip spatial patterns Snow processes –Rain-snow partitioning –Snow-water equivalent –Snowmelt –Snow-elevation effects Soil moisture Frozen soils Cloud formation Candidate Issues Highly Relevant to Hypotheses on the Water and Energy Cycles
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Slide source: B. Rockel
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TWG Hypothesis 1 Models show no superior performance on domains of origin as evaluated by accuracy in reproducing diurnal cycles of key surface hydrometeorological variables. True: Where do models show superior accuracy and why? False: How can models be improved on non-native domains while maintaining/improving home-domain accuracy?
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Hypothesis Test Use hourly CEOP data from GAPP, Baltex, MAGS, LBA and CAMP for period of CEOP-1 (1 July 2001 – 30 September 2001): Model CSESite Lat Long Lat Long BaltexCabauw 51.97 4.9352.00 5.00 BaltexLindenberg 52.17 14.1252.00 14.00 MAGS Berms 53.99 -105.1254.00-105.00 GAPP Ft. Peck 48.31 -105.1048.50-105.00 GAPP Bondville 40.01 -88.2940.00 -88.50 LBA Pantanal-19.56 -57.01-20.00 -57.00
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Hypothesis Test Compare measured values with model simulations at indicated grid points for diurnal cycles of Surface sensible heat flux Surface latent heat flux Monthly Bowen ratio Surface relative humidity Surface air temperature
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Hypothesis Test Compare measured values with model simulations at indicated grid points for diurnal cycles Compute monthly mean and quartile values of hourly measurements of each variable. Compute correlation coefficient for the 24 values of the diurnal cycle of mean and quartiles for each variable Compute amplitude of diurnal cycle Evaluate and compare model vs. observations for distributions of extremes by use of 4 th quartile populations
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NativeNative Non-native Model ContinentDomainCSE Domains Reference RSM N. AmericaGAPPBaltex, LBARoads et al. (2003) RegCM3 EuropeBaltexGAPP, LBAPal et al. (2006 submitted) CLM EuropeBaltexGAPP, LBASteppeler (2003) RCA3 EuropeBaltexGAPP, LBAJones et al. (2004) GEM-LAM** N. America GAPP** Baltex, LBACôté et al. (1998) ** model developed and tuned for global numerical weather prediction of the GEM model Models and Domains Used in Preliminary Transferability Intercomparison
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Mean
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I st Quartile
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Mean Median I st Quartile
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Mean Median I st Quartile 3 rd Quartile
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Mean Median I st Quartile 3 rd Quartile Extremes
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Mean Median I st Quartile 3 rd Quartile Extremes Outliers
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Slide source: B. Rockel
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Betts, A. K., 2004: Bull. Amer. Meteor. Soc, 85, 1673-1688.
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Betts, A. K., 2004: Bull. Amer. Meteor. Soc, 85, 1673-1688.
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Betts, A. K., 2004: Bull. Amer. Meteor. Soc, 85, 1673-1688.
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Appreciation is extended to: TWG modeling team: RSM/Scripps:John Roads and Insa Meinke CLM/GKSS: Burkhardt Rockel RegCM3/ISU: Bill Gutowski RCA3/SHMI: Colin Jones, Ulf Hansson, Ulrika Willèn, Patrick Samuelsson GEM-LAM/MSC-RPN: Colin Jones JOSS CEOP data archive: Steve Williams
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FCA=Future, region A FCA Variable or Process 1 Variable or Process 2 Climates Simulating Future Climates with Models Trained on Current Climates
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FCA=Future, region A FCA Variable or Process 1 Variable or Process 2 Climates CCA=Current, region A CCA Simulating Future Climates with Models Trained on Current Climates
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FCA=Future, region A FCA Variable or Process 1 Variable or Process 2 Model Simulations CCA, model 1 (on its home domain) Climates CCA=Current, region A CCA Simulating Future Climates with Models Trained on Current Climates
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FCA=Future, region A FCA Variable or Process 1 Variable or Process 2 Model Simulations CCA, model 1 CCA, model 2 Climates CCA=Current, region A CCA Simulating Future Climates with Models Trained on Current Climates
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FCA=Future, region A CCB FCA Variable or Process 1 Variable or Process 2 Model Simulations CCA, model 1 CCA, model 2 Climates CCA=Current, region A CCB=Current, region B CCA Simulating Future Climates with Models Trained on Current Climates
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FCA=Future, region A CCB FCA Variable or Process 1 Variable or Process 2 Model Simulations CCA, model 1 CCA, model 2 Climates CCA=Current, region A CCB=Current, region B CCA CCB, model 2 (on its home domain) Simulating Future Climates with Models Trained on Current Climates
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FCA=Future, region A CCB FCA Variable or Process 1 Variable or Process 2 Model Simulations CCA, model 1 CCA, model 2 Climates CCA=Current, region A CCB=Current, region B CCA CCB, model 2 CCB, model 1 Simulating Future Climates with Models Trained on Current Climates
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FCA=Future, region A CCB FCA Variable or Process 1 Variable or Process 2 Model Simulations CCA, model 1 CCA, model 2 Climates CCA=Current, region A CCB=Current, region B CCA CCB, model 2 CCB, model 1 Simulating Future Climates with Models Trained on Current Climates Fully spanning FCA requires: More models More domains
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NARCCAP Domain
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NARCCAP Plan A2 Emissions Scenario GFDLCCSM HADAM3 link to EU programs CGCM3 1960-1990 current 2040-2070 future Provide boundary conditions MM5 Iowa State/ PNNL RegCM3 UC Santa Cruz ICTP CRCM Quebec, Ouranos HADRM3 Hadley Centre RSM Scripps WRF NCAR/ PNNL Reanalyzed climate, 1979-2000
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Summary Transferability experiments will allow new insight on global water and energy cycles that will advance climate and weather modeling on all time and spatial scales TWG Hypothesis 1, examining the diurnal cycles of key surface hydrometeorological variables, revealed evidence that regional models have a “home domain” advantage More robust climate simulations across multiple climates gives more assurance that your model will be applicable to future climates. http://rcmlab.agron.iastate.edu/twg gstakle@iastate.edu
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